Patents by Inventor Sharanya ARCOT DESAI

Sharanya ARCOT DESAI has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20240062118
    Abstract: A deep learning model and dimensionality reduction are applied to each of a plurality of records of physiological information to derive a plurality of feature vectors. A similarities algorithm is applied to the plurality of feature vectors to form a plurality of clusters, each including a set of feature vectors. An output comprising information that enables a display of one or more of the plurality of clusters is provided, and a mechanism for selecting at least one feature vector within a selected cluster of the plurality of clusters is enabled. Upon selection of a feature vector, an output comprising information that enables a display of the record of physiological information corresponding to the selected feature vector is provided, and a mechanism for assigning a label to the displayed record is enabled. The assigned label is then automatically assigned to the records corresponding to the remaining feature vectors in the selected cluster.
    Type: Application
    Filed: November 1, 2023
    Publication date: February 22, 2024
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Benjamin E. Shanahan
  • Patent number: 11842255
    Abstract: A deep learning model and dimensionality reduction are applied to each of a plurality of records of physiological information to derive a plurality of feature vectors. A similarities algorithm is applied to the plurality of feature vectors to form a plurality of clusters, each including a set of feature vectors. An output comprising information that enables a display of one or more of the plurality of clusters is provided, and a mechanism for selecting at least one feature vector within a selected cluster of the plurality of clusters is enabled. Upon selection of a feature vector, an output comprising information that enables a display of the record of physiological information corresponding to the selected feature vector is provided, and a mechanism for assigning a label to the displayed record is enabled. The assigned label is then automatically assigned to the records corresponding to the remaining feature vectors in the selected cluster.
    Type: Grant
    Filed: September 20, 2022
    Date of Patent: December 12, 2023
    Assignee: NeuroPace, Inc.
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Benjamin E. Shanahan
  • Patent number: 11771898
    Abstract: A neurostimulation system senses electrographic signals from the brain of a patient, extracts features from the electrographic signals, and when the extracted features satisfy certain criteria, detects a neurological event type. A mapping function relates the detected neurological event type to a stimulation parameter subspace and a default stimulation parameter set where the values of the stimulation parameters define an instance of stimulation therapy for the patient. The decision whether to implement a stimulation parameter subspace or a default stimulation parameter set may be informed by integrating other information about a state of the patient. A stimulation parameter subspace or stimulation parameter set may optimized by testing it against various thresholds until certain effectiveness criteria is satisfied. The neurological event type may be one of several electrographic seizure onset types.
    Type: Grant
    Filed: September 16, 2022
    Date of Patent: October 3, 2023
    Assignee: NeuroPace, Inc.
    Inventors: Tara Leigh Crowder, Sharanya Arcot Desai, Martha Jo Morrell, Thomas Kim Tcheng, Ritu Kapur
  • Publication number: 20230172529
    Abstract: A method of assessing electrical activity of a brain includes, for each of a plurality of electrical-activity records of the brain, applying a machine-learned ESC model to the record to classify the record as one of a seizure record or a non-seizure record, wherein each of record is sensed by a corresponding one of a plurality of sensing channels of an implanted medical device; for each seizure record in a set of seizure records, applying the machine-learned ESC model to the seizure record to classify the seizure record as one of a local-seizure record or a spread-seizure record, wherein the seizure record comprises a first seizure record captured by a first sensing channel and a second seizure record captured by a second sensing channel; and for each spread-seizure record in a set of spread-seizure records, applying a machine-learned SSC model to the spread-seizure record to classify the spread-seizure record as a type of seizure spread pattern.
    Type: Application
    Filed: November 29, 2022
    Publication date: June 8, 2023
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Cairn G. Seale, Martha J. Morrell, David A. Greene
  • Publication number: 20230017756
    Abstract: A deep learning model and dimensionality reduction are applied to each of a plurality of records of physiological information to derive a plurality of feature vectors. A similarities algorithm is applied to the plurality of feature vectors to form a plurality of clusters, each including a set of feature vectors. An output comprising information that enables a display of one or more of the plurality of clusters is provided, and a mechanism for selecting at least one feature vector within a selected cluster of the plurality of clusters is enabled. Upon selection of a feature vector, an output comprising information that enables a display of the record of physiological information corresponding to the selected feature vector is provided, and a mechanism for assigning a label to the displayed record is enabled. The assigned label is then automatically assigned to the records corresponding to the remaining feature vectors in the selected cluster.
    Type: Application
    Filed: September 20, 2022
    Publication date: January 19, 2023
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Benjamin E. Shanahan
  • Publication number: 20230019572
    Abstract: A neurostimulation system senses electrographic signals from the brain of a patient, extracts features from the electrographic signals, and when the extracted features satisfy certain criteria, detects a neurological event type. A mapping function relates the detected neurological event type to a stimulation parameter subspace and a default stimulation parameter set where the values of the stimulation parameters define an instance of stimulation therapy for the patient. The decision whether to implement a stimulation parameter subspace or a default stimulation parameter set may be informed by integrating other information about a state of the patient. A stimulation parameter subspace or stimulation parameter set may optimized by testing it against various thresholds until certain effectiveness criteria is satisfied. The neurological event type may be one of several electrographic seizure onset types.
    Type: Application
    Filed: September 16, 2022
    Publication date: January 19, 2023
    Inventors: Tara Leigh Crowder, Sharanya Arcot Desai, Martha Jo Morrell, Thomas Kim Tcheng, Ritu Kapur
  • Publication number: 20220379118
    Abstract: Information relevant to making clinical decisions for a patient is identified based on electrical activity records of the patient's brain and electrical activity records of other patients' brains. A deep learning algorithm is applied to an electrical activity record of the patient, i.e., an input record, and to a set of electrical activity records of other patients, i.e., a set of search records, to obtain an input feature vector of the patient and a set of search feature vectors, each including features extracted by the deep learning algorithm. A similarities algorithm is applied to the input feature vector and the set of search feature vectors to identify a subset of search records most like the input record. Clinical information associated with one or more search records in the identified subset of search records is extracted from a database and used to make decisions regarding the patient's neuromodulation therapies.
    Type: Application
    Filed: August 5, 2022
    Publication date: December 1, 2022
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng
  • Patent number: 11478642
    Abstract: A neurostimulation system senses electrographic signals from the brain of a patient, extracts features from the electrographic signals, and when the extracted features satisfy certain criteria, detects a neurological event type. A mapping function relates the detected neurological event type to a stimulation parameter subspace and a default stimulation parameter set where the values of the stimulation parameters define an instance of stimulation therapy for the patient. The decision whether to implement a stimulation parameter subspace or a default stimulation parameter set may be informed by integrating other information about a state of the patient. A stimulation parameter subspace or stimulation parameter set may optimized by testing it against various thresholds until certain effectiveness criteria is satisfied. The neurological event type may be one of several electrographic seizure onset types.
    Type: Grant
    Filed: December 6, 2019
    Date of Patent: October 25, 2022
    Assignee: NeuroPace, Inc.
    Inventors: Tara Leigh Crowder, Sharanya Arcot Desai, Martha Jo Morrell, Thomas Kim Tcheng, Ritu Kapur
  • Patent number: 11481578
    Abstract: A deep learning model and dimensionality reduction are applied to each of a plurality of records of physiological information to derive a plurality of feature vectors. A similarities algorithm is applied to the plurality of feature vectors to form a plurality of clusters, each including a set of feature vectors. An output comprising information that enables a display of one or more of the plurality of clusters is provided, and a mechanism for selecting at least one feature vector within a selected cluster of the plurality of clusters is enabled. Upon selection of a feature vector, an output comprising information that enables a display of the record of physiological information corresponding to the selected feature vector is provided, and a mechanism for assigning a label to the displayed record is enabled. The assigned label is then automatically assigned to the records corresponding to the remaining feature vectors in the selected cluster.
    Type: Grant
    Filed: February 20, 2020
    Date of Patent: October 25, 2022
    Assignee: NeuroPace, Inc.
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Benjamin E. Shanahan
  • Publication number: 20220323019
    Abstract: A clinical response estimate (CRE) biomarker of a patient having an implanted neurostimulation system is monitored. To this end, an input dataset is derived from a subject-patient dataset that includes various different data types and different features of the patient. The data types are based on electrical activity the patient's brain sensed and stored by the implanted neurostimulation system. The input dataset is a subset of the larger subject-patient dataset, and the specific data types and patient features included in that subset are derived based on a plurality of key inputs of the subject-patient dataset. Once the input dataset is derived, it is processed by a clinical response estimator having machine-learned models. First and second machine-learned models of the clinical response estimator are applied to the input dataset to provide model inputs to an ensemble machine-learned model to determine the CRE biomarker.
    Type: Application
    Filed: March 30, 2022
    Publication date: October 13, 2022
    Inventors: Sharanya Arcot Desai, Tara L. Crowder, Thomas K. Tcheng, Martha J. Morrell, Lise Johnson Dyhr
  • Publication number: 20220314002
    Abstract: An implanted neurostimulation system is configured to sense episodes of electrographic events and determine durations of episodes. Durations of electrographic events sensed by the implanted neurostimulation system are mapped with seizure probability biomarkers derived from records of the electrographic events to create a mapping function. A seizure probability biomarker that has a value desired for the operation of the implanted neurostimulation system is selected. The duration mapped to the selected seizure probability biomarker is identified and programmed into a control module of the implanted neurostimulation system as a programmed parameter that triggers the operation by the implanted neurostimulation system. The process may be repeated for other operations of the implanted neurostimulation system.
    Type: Application
    Filed: March 30, 2022
    Publication date: October 6, 2022
    Inventors: Sharanya Arcot Desai, David A. Greene
  • Publication number: 20220313159
    Abstract: An input dataset is processed to obtain a pre-event window of model inputs and a post-event window of model inputs. The input dataset is a subset of a larger subject-patient dataset that includes different data types and features of the patient. The data types are based on electrical activity of the patient's brain that is sensed and stored by an implanted neurostimulation system. A clinical response estimator (CRE) model is applied to the pre-event window of model inputs to derive pre-event CRE biomarkers. The CRE model is also applied to the post-event window of model inputs to derive post-event CRE biomarkers. The pre-event CRE biomarkers and post-event CRE biomarkers are displayed as a function of time together with the occurrence of the event of interest.
    Type: Application
    Filed: March 30, 2022
    Publication date: October 6, 2022
    Inventors: Sharanya Arcot Desai, Tara L. Crowder, Thomas K. Tcheng, Martha J. Morrell, Lise Johnson Dyhr
  • Patent number: 11439826
    Abstract: Information relevant to making clinical decisions for a patient is identified based on electrical activity records of the patient's brain and electrical activity records of other patients' brains. A deep learning algorithm is applied to an electrical activity record of the patient, i.e., an input record, and to a set of electrical activity records of other patients, i.e., a set of search records, to obtain an input feature vector of the patient and a set of search feature vectors, each including features extracted by the deep learning algorithm. A similarities algorithm is applied to the input feature vector and the set of search feature vectors to identify a subset of search records most like the input record. Clinical information associated with one or more search records in the identified subset of search records is extracted from a database and used to make decisions regarding the patient's neuromodulation therapies.
    Type: Grant
    Filed: June 19, 2020
    Date of Patent: September 13, 2022
    Assignee: NeuroPace, Inc.
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng
  • Publication number: 20210407678
    Abstract: A server for updating a current version of a machine learning model resident in implanted medical devices includes an interface, a memory, and a processor. The interface is configured to receive a plurality of updated versions of the machine learning model from a plurality of remote sources remote from the server. The remote source may be, e.g., implanted medical devices and/or subservers. The processor is coupled to the memory and the interface and is configured to aggregate the plurality of updated versions to derive a server-updated version of the machine learning model, and to transmit the server-updated version of the machine learning model to one or more of the plurality of remote sources as a replacement for the current version of the machine learning model.
    Type: Application
    Filed: June 23, 2021
    Publication date: December 30, 2021
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng
  • Publication number: 20210186407
    Abstract: A sensor of an implantable medical device senses electrical activity of the brain. A data analyzer of the device monitors an electrographic signal corresponding to the electrical activity of the sensed brain signal, and processes the brain signal to obtain a measure of phase-amplitude coupling. For a selected portion of the electrographic signal, the data analyzer detects first features and second features of the electrographic signal. The first features represent oscillations in a low frequency range, while the second features represent oscillations in a frequency range higher than the low frequency range. For example, the low frequency range may correspond to theta frequency and the higher frequency range may correspond to gamma frequency. The data analyzer determines a measure of phase-amplitude coupling between oscillations in the low frequency range and oscillations in the higher frequency range based on occurrences of second features which coincide with first features.
    Type: Application
    Filed: March 3, 2021
    Publication date: June 24, 2021
    Inventors: Sharanya ARCOT DESAI, Thomas K. TCHENG, Stephen T. ARCHER
  • Patent number: 10966625
    Abstract: A sensor of an implantable medical device senses electrical activity of the brain. A data analyzer of the device monitors an electrographic signal corresponding to the electrical activity of the sensed brain signal, and processes the brain signal to obtain a measure of phase-amplitude coupling. For a selected portion of the electrographic signal, the data analyzer detects first features and second features of the electrographic signal. The first features represent oscillations in a low frequency range, while the second features represent oscillations in a frequency range higher than the low frequency range. For example, the low frequency range may correspond to theta frequency and the higher frequency range may correspond to gamma frequency. The data analyzer determines a measure of phase-amplitude coupling between oscillations in the low frequency range and oscillations in the higher frequency range based on occurrences of second features which coincide with first features.
    Type: Grant
    Filed: December 12, 2017
    Date of Patent: April 6, 2021
    Assignee: NeuroPace, Inc.
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Stephen T. Archer
  • Publication number: 20200316383
    Abstract: Information relevant to making clinical decisions for a patient is identified based on electrical activity records of the patient's brain and electrical activity records of other patients' brains. A deep learning algorithm is applied to an electrical activity record of the patient, i.e., an input record, and to a set of electrical activity records of other patients, i.e., a set of search records, to obtain an input feature vector of the patient and a set of search feature vectors, each including features extracted by the deep learning algorithm. A similarities algorithm is applied to the input feature vector and the set of search feature vectors to identify a subset of search records most like the input record. Clinical information associated with one or more search records in the identified subset of search records is extracted from a database and used to make decisions regarding the patient's neuromodulation therapies.
    Type: Application
    Filed: June 19, 2020
    Publication date: October 8, 2020
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng
  • Publication number: 20200272857
    Abstract: A deep learning model and dimensionality reduction are applied to each of a plurality of records of physiological information to derive a plurality of feature vectors. A similarities algorithm is applied to the plurality of feature vectors to form a plurality of clusters, each including a set of feature vectors. An output comprising information that enables a display of one or more of the plurality of clusters is provided, and a mechanism for selecting at least one feature vector within a selected cluster of the plurality of clusters is enabled. Upon selection of a feature vector, an output comprising information that enables a display of the record of physiological information corresponding to the selected feature vector is provided, and a mechanism for assigning a label to the displayed record is enabled. The assigned label is then automatically assigned to the records corresponding to the remaining feature vectors in the selected cluster.
    Type: Application
    Filed: February 20, 2020
    Publication date: August 27, 2020
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng, Benjamin E. Shanahan
  • Patent number: 10729907
    Abstract: Information relevant to making clinical decisions for a patient is identified based on electrical activity records of the patient's brain and electrical activity records of other patients' brains. A deep learning algorithm is applied to an electrical activity record of the patient, i.e., an input record, and to a set of electrical activity records of other patients, i.e., a set of search records, to obtain an input feature vector of the patient and a set of search feature vectors, each including features extracted by the deep learning algorithm. A similarities algorithm is applied to the input feature vector and the set of search feature vectors to identify a subset of search records most like the input record. Clinical information associated with one or more search records in the identified subset of search records is extracted from a database and used to make decisions regarding the patient's neuromodulation therapies.
    Type: Grant
    Filed: December 20, 2017
    Date of Patent: August 4, 2020
    Assignee: NeuroPace, Inc.
    Inventors: Sharanya Arcot Desai, Thomas K. Tcheng
  • Publication number: 20200108253
    Abstract: A neurostimulation system senses electrographic signals from the brain of a patient, extracts features from the electrographic signals, and when the extracted features satisfy certain criteria, detects a neurological event type. A mapping function relates the detected neurological event type to a stimulation parameter subspace and a default stimulation parameter set where the values of the stimulation parameters define an instance of stimulation therapy for the patient. The decision whether to implement a stimulation parameter subspace or a default stimulation parameter set may be informed by integrating other information about a state of the patient. A stimulation parameter subspace or stimulation parameter set may optimized by testing it against various thresholds until certain effectiveness criteria is satisfied. The neurological event type may be one of several electrographic seizure onset types.
    Type: Application
    Filed: December 6, 2019
    Publication date: April 9, 2020
    Inventors: Tara Leigh Crowder, Sharanya Arcot Desai, Martha Jo Morrell, Thomas Kim Tcheng, Ritu Kapur